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Evolutionary Algorithm-based Feature Selection for an Intrusion Detection System

机译:基于进化算法的入侵检测系统的特征选择

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摘要

Keeping computer reliability to confirm reliable, secure, and truthful correspondence of data between different enterprises is a major security issue. Ensuring information correspondence over the web or computer grids is always under threat of hackers or intruders. Many techniques have been utilized in intrusion detections, but all have flaws. In this paper, a new hybrid technique is proposed, which combines the Ensemble of Feature Selection (EFS) algorithm and Teaching LearningBased Optimization (TLBO) techniques. In the proposed, EFSTLBO method, the EFS strategy is applied to rank the features for choosing the ideal best subset of applicable information, and the TLBO is utilized to identify the most important features from the produced datasets. The TLBO algorithm uses the Extreme Learning Machine (ELM) to choose the most effective attributes and to enhance classification accuracy. The performance of the recommended technique is evaluated in a benchmark dataset. The experimental outcomes depict that the proposed model has high predictive accuracy, detection rate, false-positive rate, and requires less significant attributes than other techniques known from the literature.
机译:保持计算机可靠性以确认不同企业之间的数据的可靠,安全和真实的对应性是一个主要的安全问题。确保通过网络或计算机网格的信息对应始终受黑客或入侵者的威胁。在入侵检测中已经利用了许多技术,但所有技术都有缺陷。在本文中,提出了一种新的混合技​​术,其结合了特征选择(EFS)算法的集合和教学学习优化(TLBO)技术。在提议的EFSTLBO方法中,应用EFS策略来对选择适用信息的理想最佳子集的特征进行排名,并且利用TLBO来识别来自生产数据集的最重要的特征。 TLBO算法使用极限学习机(ELM)来选择最有效的属性并提高分类准确性。推荐技术的性能在基准数据集中进行评估。实验结果描绘了所提出的模型具有高的预测精度,检测率,假阳性率,并且需要比文献中已知的其他技术更少的重要属性。

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